Relative survival multistate Markov model.

Prognostic studies often have to deal with two important challenges: (i) separating effects of predictions on different 'competing' events and (ii) uncertainty about cause of death. Multistate Markov models permit multivariable analyses of competing risks of, for example, mortality versus disease recurrence. On the other hand, relative survival methods help estimate disease-specific mortality risks even in the absence of data on causes of death. In this paper, we propose a new Markov relative survival (MRS) model that attempts to combine these two methodologies. Our MRS model extends the existing multistate Markov piecewise constant intensities model to relative survival modeling. The intensity of transitions leading to death in the MRS model is modeled as the sum of an estimable excess hazard of mortality from the disease of interest and an 'offset' defined as the expected hazard of all-cause 'natural' mortality obtained from relevant life-tables. We evaluate the new MRS model through simulations, with a design based on registry-based prognostic studies of colon cancer. Simulation results show almost unbiased estimates of prognostic factor effects for the MRS model. We also applied the new MRS model to reassess the role of prognostic factors for mortality in a study of colorectal cancer. The MRS model considerably reduces the bias observed with the conventional Markov model that does not permit accounting for unknown causes of death, especially if the 'true' effects of a prognostic factor on the two types of mortality differ substantially.

[1]  David R. Cox,et al.  Regression models and life tables (with discussion , 1972 .

[2]  J. Estève,et al.  Relative survival and the estimation of net survival: elements for further discussion. , 1990, Statistics in medicine.

[3]  M. Abrahamowicz,et al.  Comparison of Selected Methods for Modeling of Multi-State Disease Progression Processes: A Simulation Study , 2011, Commun. Stat. Simul. Comput..

[4]  R. Henderson,et al.  Goodness of fit of relative survival models , 2005, Statistics in Medicine.

[5]  Catherine Quantin,et al.  A relative survival regression model using B‐spline functions to model non‐proportional hazards , 2003, Statistics in medicine.

[6]  J. Estève,et al.  An overall strategy based on regression models to estimate relative survival and model the effects of prognostic factors in cancer survival studies , 2007, Statistics in medicine.

[7]  Paul W Dickman,et al.  Regression models for relative survival , 2004, Statistics in medicine.

[8]  Buckley Jd,et al.  Additive and multiplicative models for relative survival rates. , 1984 .

[9]  J. Griffiths The Theory of Stochastic Processes , 1967 .

[10]  N. Keiding,et al.  Multi-state models for event history analysis , 2002, Statistical methods in medical research.

[11]  Daniel Commenges,et al.  MKVPCI: a computer program for Markov models with piecewise constant intensities and covariates , 2001, Comput. Methods Programs Biomed..

[12]  Tests for treatment group differences in the hazards for survival, before and after the occurrence of an intermediate event , 2005, Statistics in medicine.

[13]  P. Sasieni,et al.  Proportional excess hazards , 1996 .

[14]  M. Abrahamowicz,et al.  Modeling recurrence in colorectal cancer. , 2004, Journal of clinical epidemiology.

[15]  T. Hakulinen On long-term relative survival rates. , 1977, Journal of chronic diseases.

[16]  G. Hédelin,et al.  Cancer incidence and mortality in France over the period 1978-2000. , 2003, Revue d'epidemiologie et de sante publique.

[17]  M Lunn,et al.  Applying Cox regression to competing risks. , 1995, Biometrics.

[18]  H Brenner,et al.  Controlling for Continuous Confounders in Epidemiologic Research , 1997, Epidemiology.

[19]  J. Kalbfleisch,et al.  The Analysis of Panel Data under a Markov Assumption , 1985 .

[20]  P Hougaard,et al.  Multi-state Models: A Review , 1999, Lifetime data analysis.

[21]  Ralf Bender,et al.  Generating survival times to simulate Cox proportional hazards models , 2005, Statistics in medicine.

[22]  M. Abrahamowicz,et al.  Joint estimation of time‐dependent and non‐linear effects of continuous covariates on survival , 2007, Statistics in medicine.

[23]  Catherine Quantin,et al.  Comparison of Cox's and relative survival models when estimating the effects of prognostic factors on disease‐specific mortality: a simulation study under proportional excess hazards , 2005, Statistics in medicine.

[24]  C Quantin,et al.  Variation over time of the effects of prognostic factors in a population-based study of colon cancer: comparison of statistical models. , 1999, American journal of epidemiology.

[25]  D Commenges,et al.  Multi-state Models in Epidemiology , 1999, Lifetime data analysis.

[26]  M. Abrahamowicz,et al.  Modelling time-dependent hazard ratios in relative survival: application to colon cancer. , 2001, Journal of clinical epidemiology.

[27]  Robert Gray,et al.  Flexible Methods for Analyzing Survival Data Using Splines, with Applications to Breast Cancer Prognosis , 1992 .